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首页> 外文期刊>Journal of Animal Breeding and Genetics >Polynomial order selection in random regression models via penalizing adaptively the likelihood
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Polynomial order selection in random regression models via penalizing adaptively the likelihood

机译:通过自适应惩罚似然来选择随机回归模型中的多项式阶数

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摘要

Orthogonal Legendre polynomials (LP) are used to model the shape of additive genetic and permanent environmental effects in random regression models (RRM). Frequently, the Akaike (AIC) and the Bayesian (BIC) information criteria are employed to select LP order. However, it has been theoretically shown that neither AIC nor BIC is simultaneously optimal in terms of consistency and efficiency. Thus, the goal was to introduce a method, penalizing adaptively the likelihood' (PAL), as a criterion to select LP order in RRM. Four simulated data sets and real data (60513 records, 6675 Colombian Holstein cows) were employed. Nested models were fitted to the data, and AIC, BIC and PAL were calculated for all of them. Results showed that PAL and BIC identified with probability of one the true LP order for the additive genetic and permanent environmental effects, but AIC tended to favour over parameterized models. Conversely, when the true model was unknown, PAL selected the best model with higher probability than AIC. In the latter case, BIC never favoured the best model. To summarize, PAL selected a correct model order regardless of whether the true' model was within the set of candidates.
机译:正交勒让德多项式(LP)用于在随机回归模型(RRM)中对加性遗传效应和永久环境效应的形状进行建模。通常,使用Akaike(AIC)和Bayesian(BIC)信息标准来选择LP顺序。但是,从理论上讲,就一致性和效率而言,AIC和BIC都不是同时最佳的。因此,目标是引入一种自适应惩罚似然度(PAL)的方法,作为在RRM中选择LP顺序的标准。使用了四个模拟数据集和真实数据(60513个记录,6675头哥伦比亚荷斯坦奶牛)。将嵌套模型拟合到数据,并对所有模型计算AIC,BIC和PAL。结果表明,PAL和BIC可能以一个真实的LP顺序确定了加性遗传和永久环境影响的可能性,但AIC倾向于优先于参数化模型。相反,当真实模型未知时,PAL选择最佳模型的可能性要高于AIC。在后一种情况下,BIC从未青睐最佳模式。总而言之,PAL选择了正确的模型顺序,而不管“真”模型是否在候选集合之内。

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